Table 3.
Ref.
|
Study design (n of sites)
|
Number of patients
|
Prediction task
|
CT phase (n of CT scanner)
|
Segmentation method
|
ML algorithm
|
Data powering algorithm
|
Validation
|
Performance
|
Bibault et al[85], 2018 | Retrospective (3) | 99 | pCR after nCRT | Unenhanced (3) | Manual – 3D | DNN | Radiomics and clinical features | Internal validation (cross-validation) | AUC: 0.72 |
Hamerla et al[86], 2019 | Retrospective (1) | 169 | pCR after nCRT | Unenhanced (1) | Manual – 3D | RF | Radiomics features | Internal validation (cross-validation) | Accuracy: 0.87 |
Yuan et al[87], 2020 | Retrospective (1) | 91 | pCR after nCRT | Unenhanced (1) | Manual – 3D | RF | Radiomics features | Internal validation (train/validation split) | Accuracy: 0.84 |
Wu et al[90], 2019 | Retrospective (1) | 102 | MSI status | Venous phase - DECT (2) | Manual - 3 2D ROIs for lesion | LR | Radiomics features | Internal validation (train/validation /test split) | AUC: 0.87 |
Fan et al[91], 2019 | Retrospective (1) | 100 | MSI status | Portal venous phase (2) | Semiautomatic – 3D | NB | Radiomics features | Internal validation (cross-validation) | AUC: 0.75 |
Wu et al[92], 2020 | Retrospective (1) | 173 | KRAS mutation | Portal venous phase (3) | Manual + DL – single 2D ROI | LR | Radiomics features | Internal validation (train/test split) | C-index: 0.83 |
Wang et al[94], 2019 | Retrospective (1) | 411 | Prediction of survival | Unenhanced (1) | Manual – 3D | 10-F CV | Radiomics and clinical features | Internal validation (cross-validation) | C-index: 0.73 |
In all studies, three-dimensional manual segmentation of the primary tumor was performed to extract radiomic features, with the exceptions of Alvarez-Jimenez et al[113] (rectal wall), van Griethuysen et al[60] (semiautomatic segmentation) and Yang et al[115] (two-dimensional manual segmentation). ANN: Artificial neural network; AUC: Area under the receiver operating characteristic curve; CNN: Convolutional neural network; DWI: Diffusion-weighted imaging; EMLM: Ensemble machine learning model; GR: Good responders; LASSO: Least absolute shrinkage and selection operator; RF: Random forest; LR: Logistic regression; ML: Machine learning; MRI: Magnetic resonance imaging; QDA: Quadratic discriminant analysis; SVM: Support vector machine; T1w: T1-weighted; T2w: T2-weighted; TRG: Tumor regression grade.
10F-CV: 10-fold cross-validation; CT: Computed tomography; DECT: Dual-energy computed tomography; DNN: Deep neural network; LR: Logistic regression; ML: Machine learning; MSI: Microsatellite instability; NB: Naive Bayes; nCRT: Neoadjuvant chemoradiotherapy; pCR: Pathologic complete response; RF: Random forest.